---
title: "Reference: Lance Vector Store | Vectors"
description: "Documentation for the LanceVectorStore class in Mastra, which provides vector search using LanceDB, an embedded vector database based on the Lance columnar format."
---

# Lance Vector Store

The LanceVectorStore class provides vector search using [LanceDB](https://lancedb.github.io/lancedb/), an embedded vector database built on the Lance columnar format. It offers efficient storage and fast similarity search for both local development and production deployments.

## Factory Method

The LanceVectorStore uses a factory pattern for creation. You should use the static `create()` method rather than the constructor directly.

<PropertiesTable
  content={[
    {
      name: "uri",
      type: "string",
      description: "Path to LanceDB database or URI for cloud deployments",
    },
    {
      name: "options",
      type: "ConnectionOptions",
      description: "Additional connection options for LanceDB",
      isOptional: true,
    },
  ]}
/>

## Constructor Examples

You can create a `LanceVectorStore` instance using the static create method:

```ts
import { LanceVectorStore } from "@mastra/lance";

// Connect to a local database
const vectorStore = await LanceVectorStore.create("/path/to/db");

// Connect to a LanceDB cloud database
const cloudStore = await LanceVectorStore.create("db://host:port");

// Connect to a cloud database with options
const s3Store = await LanceVectorStore.create("s3://bucket/db", {
  storageOptions: { timeout: "60s" },
});
```

## Methods

### createIndex()

<PropertiesTable
  content={[
    {
      name: "tableName",
      type: "string",
      description: "Name of the table to create index in",
    },
    {
      name: "indexName",
      type: "string",
      description: "Name of the index (column name) to create",
    },
    {
      name: "dimension",
      type: "number",
      description: "Vector dimension (must match your embedding model)",
    },
    {
      name: "metric",
      type: "'cosine' | 'euclidean' | 'dotproduct'",
      isOptional: true,
      defaultValue: "cosine",
      description: "Distance metric for similarity search",
    },
    {
      name: "indexConfig",
      type: "LanceIndexConfig",
      isOptional: true,
      defaultValue: "{ type: 'hnsw' }",
      description: "Index configuration",
    },
  ]}
/>

#### LanceIndexConfig

<PropertiesTable
  content={[
    {
      name: "type",
      type: "'ivfflat' | 'hnsw'",
      description: "Index type",
      defaultValue: "hnsw",
      properties: [
        {
          type: "string",
          parameters: [
            {
              name: "ivfflat",
              type: "ivfflat",
              description:
                "Clusters vectors into lists for approximate search.",
            },
            {
              name: "hnsw",
              type: "hnsw",
              description:
                "Graph-based index offering fast search times and high recall.",
            },
          ],
        },
      ],
    },
    {
      name: "numPartitions",
      type: "number",
      isOptional: true,
      defaultValue: "128",
      description: "Number of partitions for IVF indexes",
    },
    {
      name: "numSubVectors",
      type: "number",
      isOptional: true,
      defaultValue: "16",
      description: "Number of sub-vectors for product quantization",
    },
    {
      name: "hnsw",
      type: "HNSWConfig",
      isOptional: true,
      description: "HNSW configuration",
      properties: [
        {
          type: "object",
          parameters: [
            {
              name: "m",
              type: "number",
              description:
                "Maximum number of connections per node (default: 16)",
              isOptional: true,
            },
            {
              name: "efConstruction",
              type: "number",
              description: "Build-time complexity (default: 100)",
              isOptional: true,
            },
          ],
        },
      ],
    },
  ]}
/>

### createTable()

<PropertiesTable
  content={[
    {
      name: "tableName",
      type: "string",
      description: "Name of the table to create",
    },
    {
      name: "data",
      type: "Record<string, unknown>[] | TableLike",
      description: "Initial data for the table",
    },
    {
      name: "options",
      type: "Partial<CreateTableOptions>",
      isOptional: true,
      description: "Additional table creation options",
    },
  ]}
/>

### upsert()

<PropertiesTable
  content={[
    {
      name: "tableName",
      type: "string",
      description: "Name of the table to upsert vectors into",
    },
    {
      name: "vectors",
      type: "number[][]",
      description: "Array of embedding vectors",
    },
    {
      name: "metadata",
      type: "Record<string, any>[]",
      isOptional: true,
      description: "Metadata for each vector",
    },
    {
      name: "ids",
      type: "string[]",
      isOptional: true,
      description: "Optional vector IDs (auto-generated if not provided)",
    },
  ]}
/>

### query()

<PropertiesTable
  content={[
    {
      name: "tableName",
      type: "string",
      description: "Name of the table to query",
    },
    {
      name: "queryVector",
      type: "number[]",
      description: "Query vector",
    },
    {
      name: "topK",
      type: "number",
      isOptional: true,
      defaultValue: "10",
      description: "Number of results to return",
    },
    {
      name: "filter",
      type: "Record<string, any>",
      isOptional: true,
      description: "Metadata filters",
    },
    {
      name: "includeVector",
      type: "boolean",
      isOptional: true,
      defaultValue: "false",
      description: "Whether to include the vector in the result",
    },
    {
      name: "columns",
      type: "string[]",
      isOptional: true,
      defaultValue: "[]",
      description: "Specific columns to include in the result",
    },
    {
      name: "includeAllColumns",
      type: "boolean",
      isOptional: true,
      defaultValue: "false",
      description: "Whether to include all columns in the result",
    },
  ]}
/>

### listTables()

Returns an array of table names as strings.

```typescript copy
const tables = await vectorStore.listTables();
// ['my_vectors', 'embeddings', 'documents']
```

### getTableSchema()

<PropertiesTable
  content={[
    {
      name: "tableName",
      type: "string",
      description: "Name of the table to describe",
    },
  ]}
/>

Returns the schema of the specified table.

### deleteTable()

<PropertiesTable
  content={[
    {
      name: "tableName",
      type: "string",
      description: "Name of the table to delete",
    },
  ]}
/>

### deleteAllTables()

Deletes all tables in the database.

### listIndexes()

Returns an array of index names as strings.

### describeIndex()

<PropertiesTable
  content={[
    {
      name: "indexName",
      type: "string",
      description: "Name of the index to describe",
    },
  ]}
/>

Returns information about the index:

```typescript copy
interface IndexStats {
  dimension: number;
  count: number;
  metric: "cosine" | "euclidean" | "dotproduct";
  type: "ivfflat" | "hnsw";
  config: {
    m?: number;
    efConstruction?: number;
    numPartitions?: number;
    numSubVectors?: number;
  };
}
```

### deleteIndex()

<PropertiesTable
  content={[
    {
      name: "indexName",
      type: "string",
      description: "Name of the index to delete",
    },
  ]}
/>

### updateVector()

Update a single vector by ID or by metadata filter. Either `id` or `filter` must be provided, but not both.

<PropertiesTable
  content={[
    {
      name: "indexName",
      type: "string",
      description: "Name of the index containing the vector",
    },
    {
      name: "id",
      type: "string",
      isOptional: true,
      description: "ID of the vector to update (mutually exclusive with filter)",
    },
    {
      name: "filter",
      type: "Record<string, any>",
      isOptional: true,
      description: "Metadata filter to identify vector(s) to update (mutually exclusive with id)",
    },
    {
      name: "update",
      type: "{ vector?: number[]; metadata?: Record<string, any>; }",
      description: "Object containing the vector and/or metadata to update",
    },
  ]}
/>

### deleteVector()

<PropertiesTable
  content={[
    {
      name: "indexName",
      type: "string",
      description: "Name of the index containing the vector",
    },
    {
      name: "id",
      type: "string",
      description: "ID of the vector to delete",
    },
  ]}
/>

### deleteVectors()

Delete multiple vectors by IDs or by metadata filter. Either `ids` or `filter` must be provided, but not both.

<PropertiesTable
  content={[
    {
      name: "indexName",
      type: "string",
      description: "Name of the index containing the vectors to delete",
    },
    {
      name: "ids",
      type: "string[]",
      isOptional: true,
      description: "Array of vector IDs to delete (mutually exclusive with filter)",
    },
    {
      name: "filter",
      type: "Record<string, any>",
      isOptional: true,
      description: "Metadata filter to identify vectors to delete (mutually exclusive with ids)",
    },
  ]}
/>

### close()

Closes the database connection.

## Response Types

Query results are returned in this format:

```typescript copy
interface QueryResult {
  id: string;
  score: number;
  metadata: Record<string, any>;
  vector?: number[]; // Only included if includeVector is true
  document?: string; // Document text if available
}
```

## Error Handling

The store throws typed errors that can be caught:

```typescript copy
try {
  await store.query({
    tableName: "my_vectors",
    queryVector: queryVector,
  });
} catch (error) {
  if (error instanceof Error) {
    console.log(error.message);
  }
}
```

## Best Practices

- Use the appropriate index type for your use case:
  - HNSW for better recall and performance when memory isn't constrained
  - IVF for better memory efficiency with large datasets
- For optimal performance with large datasets, consider adjusting `numPartitions` and `numSubVectors` values
- Use `close()` method to properly close connections when done with the database
- Store metadata with a consistent schema to simplify filtering operations

## Related

- [Metadata Filters](../rag/metadata-filters)
